Organizations that use time series forecasting on a regular basis generally forecast many variables, such as demand for many products or services. Within the population of variables forecasted by an organization, we can expect that there will be groups of analogous time series that follow similar, time-based patterns. The co-variation of analogous time series is a largely untapped source of information that can improve forecast accuracy (and explainability). This paper takes the Bayesian pooling approach to drawing information from analogous time series to model and forecast a given time series. Bayesian pooling uses data from analogous time series as multiple observations per time period in a group-level model. It then combines estimated p...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Forecasting time series data is an integral component for management, planning and decision making. ...
Among various time series (TS) forecasting methods, ensemble forecast is extensively acknowledged as...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
It is rather common to have several competing forecasts for the same variable, and many methods have...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
A flexible Bayesian periodic autoregressive model is used for the prediction of quarterly and monthl...
This paper provides a simple shrinkage representation that describes the operational characteristics...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
The M4 forecasting competition challenged the participants to forecast 100,000 time series with diff...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Forecasting time series data is an integral component for management, planning and decision making. ...
Among various time series (TS) forecasting methods, ensemble forecast is extensively acknowledged as...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
It is rather common to have several competing forecasts for the same variable, and many methods have...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
Pooling forecasts obtained from different procedures typically reduces the mean square forecast erro...
A flexible Bayesian periodic autoregressive model is used for the prediction of quarterly and monthl...
This paper provides a simple shrinkage representation that describes the operational characteristics...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
The M4 forecasting competition challenged the participants to forecast 100,000 time series with diff...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Forecasting time series data is an integral component for management, planning and decision making. ...
Among various time series (TS) forecasting methods, ensemble forecast is extensively acknowledged as...